Conference Proceedings

On the generalization of AR processes to riemannian manifolds

J Xavier, JH Manton

ICASSP IEEE International Conference on Acoustics Speech and Signal Processing Proceedings | Published : 2006

Abstract

The autoregressive (AR) process is fundamental to linear signal processing and is commonly used to model the behaviour of an object evolving on Euclidean space. In real life, there are myriad examples of objects evolving not on flat spaces but on curved spaces such as the surface of a sphere. For instance, wind-direction studies in meteorology and the estimation of relative rotations of tectonic plates based on observations on the Earth's surface deal with spherical data, while subspace tracking in signal processing is actually inference on the Grassmann manifold. This paper considers how to extend the AR process to one evolving on a curved space, or in a general, a manifold. Doing so is non..

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University of Melbourne Researchers